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Eigenvalues of covariance matrices: Application to neural-network learning
Yann Le Cun
,
Ido Kanter
, Sara A. Solla
Department of Physics - at Bar-Ilan University
Lucent
Bar-Ilan University
Research output
:
Contribution to journal
›
Article
›
peer-review
121
Scopus citations
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Keyphrases
Neural Network
100%
Eigenvalues of Covariance Matrices
100%
Matrix Application
100%
Learning Process
50%
Coupling Coefficient
50%
Eigenvalue Spectrum
50%
Outer Product
50%
Symmetric Matrices
50%
Eigenvalue Distribution
50%
Second-order Properties
50%
Analytic Computation
50%
Random Vector
50%
Hessian Matrix
50%
Mathematics
Covariance Matrix
100%
Neural Network
100%
Eigenvalue
100%
Objective Function
33%
Outer Product
33%
Symmetric Matrix
33%
State Variable
33%
Random Vector
33%
Network Model
33%
Hessian Matrix
33%
Engineering
Eigenvalue
100%
Covariance Matrix
100%
Objective Function
33%
Network Model
33%
Coupling Coefficient
33%
State Variable
33%
Symmetric Matrix
33%
Hessian Matrix
33%
Outer Product
33%